Dynamic Asset Allocation with Asset-Specific Regime Forecasts

Yizhan Shu, Chenyu Yu, John M. Mulvey
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Abstract

This article introduces a novel hybrid regime identification-forecasting framework designed to enhance multi-asset portfolio construction by integrating asset-specific regime forecasts. Unlike traditional approaches that focus on broad economic regimes affecting the entire asset universe, our framework leverages both unsunpervised and supervised learning to generate tailored regime forecasts for individual assets. Initially, we use the statistical jump model, a robust unsupervised regime identification model, to derive regime labels for historical periods, classifying them into bullish or bearish states based on features extracted from an asset return series. Following this, a supervised gradient-boosted decision tree classifier is trained to predict these regimes using a combination of asset-specific return features and cross-asset macro-features. We apply this framework individually to each asset in our universe. Subsequently, return and risk forecasts which incorporate these regime predictions are input into Markowitz mean-variance optimization to determine optimal asset allocation weights. We demonstrate the efficacy of our approach through an empirical study on a multi-asset portfolio comprising twelve risky assets, including global equity, bond, real estate, and commodity indexes spanning from 1991 to 2023. The results consistently show outperformance across various portfolio models, including minimum-variance, mean-variance, and naive-diversified portfolios, highlighting the advantages of integrating asset-specific regime forecasts into dynamic asset allocation.
利用特定资产制度预测进行动态资产配置
本文介绍了一种新颖的混合制度识别-预测框架,旨在通过整合特定资产的制度预测来加强多资产投资组合的构建。与关注影响整个资产领域的广泛经济制度的传统方法不同,我们的框架利用非监督学习和监督学习为单个资产生成量身定制的制度预测。起初,我们使用统计跳跃模型(一种稳健的非监督机制识别模型)来推导历史时期的机制标签,根据从资产回报序列中提取的特征将其分为看涨或看跌状态。在此基础上,利用特定资产回报特征和跨资产宏观特征的组合,训练出监督梯度提升决策树分类器来预测这些制度。我们将这一框架单独应用于我们的宇宙中的每种资产。随后,将包含这些机制预测的收益和风险预测输入马科维茨均值-方差优化,以确定最佳资产配置权重。我们通过对 1991 年至 2023 年期间由 12 种风险资产(包括全球股票、债券、房地产和商品指数)组成的多资产投资组合进行实证研究,证明了我们方法的有效性。研究结果一致表明,在各种投资组合模型中,包括最小方差、均值方差和天真分散投资组合中,我们的方法都表现出色,凸显了将特定资产制度预测纳入动态资产配置的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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